CLIRMar 11, 2012

Categories of Emotion names in Web retrieved texts

arXiv:1203.2293v15 citations
Originality Incremental advance
AI Analysis

This provides an automated, scalable method for emotion categorization in social psychology, though it is incremental as it replicates existing findings.

The study tackled the problem of categorizing emotion names by proposing a new approach that uses web-retrieved texts to compute similarities based on common words in contexts, finding that the resulting emotion space and categories were consistent with those from human judgments.

The categorization of emotion names, i.e., the grouping of emotion words that have similar emotional connotations together, is a key tool of Social Psychology used to explore people's knowledge about emotions. Without exception, the studies following that research line were based on the gauging of the perceived similarity between emotion names by the participants of the experiments. Here we propose and examine a new approach to study the categories of emotion names - the similarities between target emotion names are obtained by comparing the contexts in which they appear in texts retrieved from the World Wide Web. This comparison does not account for any explicit semantic information; it simply counts the number of common words or lexical items used in the contexts. This procedure allows us to write the entries of the similarity matrix as dot products in a linear vector space of contexts. The properties of this matrix were then explored using Multidimensional Scaling Analysis and Hierarchical Clustering. Our main findings, namely, the underlying dimension of the emotion space and the categories of emotion names, were consistent with those based on people's judgments of emotion names similarities.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes